Abstract

Motion artifacts may occur in coronary computed tomography angiography (CCTA) due to the heartbeat and impede the clinician's diagnosis of coronary arterial diseases. Thus, motion artifact correction of the coronary artery is required to quantify the risk of disease more accurately. We present a novel method based on deep learning for motion artifact correction in CCTA. Because the image of the coronary artery without motion (the ground-truth data required in supervised deep learning) is medically unattainable, we apply a style transfer method to 2D image patches cropped from full-phase 4D computed tomography (CT) to synthesize these images. We then train a convolutional neural network (CNN) for motion artifact correction using this synthetic ground-truth (SynGT). During testing, the output motion-corrected 2D image patches of the trained network are reinserted into the 3D CT volume with volumetric interpolation. The proposed method is evaluated using both phantom and clinical data. A phantom study demonstrates comparable results to other methods in quantitative performance and outperforms those methods in computation time. For clinical data, a quantitative analysis based on metric measurements is presented that confirms the correction of motion artifacts. Moreover, an observer study finds that by applying the proposed method, motion artifacts are markedly reduced, and boundaries of the coronary artery are much sharper, with a strong inter-observer agreement (κ = 0.78). Finally, evaluations using commercial software on the original and resulting CT volumes of the proposed method reveal a considerable increase in tracked coronary artery length.

Highlights

  • Coronary artery disease (CAD), known as ischemic heart disease, is the leading cause of death globally [1]

  • The three main contributions of our work are as follows: First, we propose a method for motion correction using deep learning, in which the ground-truth is synthesized using style transfer between corresponding 2D image patches of the coronary artery extracted at different phases within a 4D computed tomography (CT)

  • We evaluated our method on the C AVAREV platform [31], which is based on simulated dynamic projections based on the 4D XCAT phantom with contrasted coronary arteries derived from patient data

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Summary

Introduction

Coronary artery disease (CAD), known as ischemic heart disease, is the leading cause of death globally [1]. Prospective electrocardiography (ECG)-gating can be used to address this problem by timing the CCTA acquisition to the most quiescent phase of the heartbeat, motion artifacts can occur if the heart rate is very high or irregular. Drugs such as beta-blockers may generally be administered to slow down the patient heart rate when it is higher than 65 beats per minute, but often with limited efficacy [3] or more frequent angina and ischemia [4]

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